use ruff_python_ast::Expr;

use ruff_macros::{ViolationMetadata, derive_message_formats};
use ruff_python_semantic::Modules;
use ruff_text_size::Ranged;

use crate::Violation;
use crate::checkers::ast::Checker;

/// ## What it does
/// Checks for the use of legacy `np.random` function calls.
///
/// ## Why is this bad?
/// According to the NumPy documentation's [Legacy Random Generation]:
///
/// > The `RandomState` provides access to legacy generators... This class
/// > should only be used if it is essential to have randoms that are
/// > identical to what would have been produced by previous versions of
/// > NumPy.
///
/// The members exposed directly on the `random` module are convenience
/// functions that alias to methods on a global singleton `RandomState`
/// instance. NumPy recommends using a dedicated `Generator` instance
/// rather than the random variate generation methods exposed directly on
/// the `random` module, as the new `Generator` is both faster and has
/// better statistical properties.
///
/// See the documentation on [Random Sampling] and [NEP 19] for further
/// details.
///
/// ## Example
/// ```python
/// import numpy as np
///
/// np.random.seed(1337)
/// np.random.normal()
/// ```
///
/// Use instead:
/// ```python
/// rng = np.random.default_rng(1337)
/// rng.normal()
/// ```
///
/// [Legacy Random Generation]: https://numpy.org/doc/stable/reference/random/legacy.html#legacy
/// [Random Sampling]: https://numpy.org/doc/stable/reference/random/index.html#random-quick-start
/// [NEP 19]: https://numpy.org/neps/nep-0019-rng-policy.html
#[derive(ViolationMetadata)]
#[violation_metadata(stable_since = "v0.0.248")]
pub(crate) struct NumpyLegacyRandom {
    method_name: String,
}

impl Violation for NumpyLegacyRandom {
    #[derive_message_formats]
    fn message(&self) -> String {
        let NumpyLegacyRandom { method_name } = self;
        format!("Replace legacy `np.random.{method_name}` call with `np.random.Generator`")
    }
}

/// NPY002
pub(crate) fn legacy_random(checker: &Checker, expr: &Expr) {
    if !checker.semantic().seen_module(Modules::NUMPY) {
        return;
    }

    if let Some(method_name) =
        checker
            .semantic()
            .resolve_qualified_name(expr)
            .and_then(|qualified_name| {
                // seeding state
                if matches!(
                    qualified_name.segments(),
                    [
                        "numpy",
                        "random",
                        // Seeds
                        "seed" |
                    "get_state" |
                    "set_state" |
                    // Simple random data
                    "rand" |
                    "ranf" |
                    "sample" |
                    "randn" |
                    "randint" |
                    "random" |
                    "random_integers" |
                    "random_sample" |
                    "choice" |
                    "bytes" |
                    // Permutations
                    "shuffle" |
                    "permutation" |
                    // Distributions
                    "beta" |
                    "binomial" |
                    "chisquare" |
                    "dirichlet" |
                    "exponential" |
                    "f" |
                    "gamma" |
                    "geometric" |
                    "gumbel" |
                    "hypergeometric" |
                    "laplace" |
                    "logistic" |
                    "lognormal" |
                    "logseries" |
                    "multinomial" |
                    "multivariate_normal" |
                    "negative_binomial" |
                    "noncentral_chisquare" |
                    "noncentral_f" |
                    "normal" |
                    "pareto" |
                    "poisson" |
                    "power" |
                    "rayleigh" |
                    "standard_cauchy" |
                    "standard_exponential" |
                    "standard_gamma" |
                    "standard_normal" |
                    "standard_t" |
                    "triangular" |
                    "uniform" |
                    "vonmises" |
                    "wald" |
                    "weibull" |
                    "zipf"
                    ]
                ) {
                    Some(qualified_name.segments()[2])
                } else {
                    None
                }
            })
    {
        checker.report_diagnostic(
            NumpyLegacyRandom {
                method_name: method_name.to_string(),
            },
            expr.range(),
        );
    }
}
